Systems and methods for false positive mitigation in impulsive sound detectors

ABSTRACT

A method data augmentation includes receiving audio stream data associated with at least one impulse event, receiving a label associated with the audio stream data, and detecting, using an onset detector, at least one peak of the at least one impulse event. The method also includes extracting at least one positive sample of the audio stream data associated with the at least one impulse event. The method also includes applying, to the at least one positive sample, the label associated with the audio stream data and extracting at least one negative sample of the audio stream data associated with the at least one impulse event. The method also includes augmenting training data based on the at least one positive sample and the at least one negative sample and training at least one machine-learning model using the augmented training data.

TECHNICAL FIELD

The present disclosure relates to computer systems that have capability for artificial intelligence, including neural networks. In embodiments, this disclosure relates to mitigating false positive impulse sound detection.

BACKGROUND

The use of machine-learning models to detect and recognize various impulsive sounds (e.g., gunshots, vehicle collisions, and the like) in audio recordings and real-time acquisitions has several useful applications ranging from physical security to content retrieval. However, successful deployment of such machine-learning models may be challenging, as different types of impulsive sounds share common temporal and spectral characteristics that may be dominated by the surrounding acoustic environment (e.g., rather than the impact event type itself). As such, the output of such a machine-learning model may include a relatively high false positive rate that may significantly reduce a practical usefulness of such systems.

SUMMARY

An aspect of the disclosed embodiments includes a computer-implemented method for data augmentation. The method includes receiving audio stream data associated with at least one impulse event, receiving a label associated with the audio stream data, and detecting, using an onset detector algorithm, at least one peak of the at least one impulse event. The method also includes extracting at least one positive sample of the audio stream data associated with the at least one impulse event, wherein the at least one positive sample includes a portion of the audio stream data associated with a first time value of the audio stream data. The method also includes labeling, the at least one positive sample, with the label associated with the audio stream data to yield at least one labeled positive sample and extracting at least one negative sample of the audio stream data associated with the at least one impulse event, wherein the at least one negative sample does not include the portion of the audio stream data associated with the first time value of the audio stream data. The method also includes augmenting machine-learning training data based on the at least one labeled positive sample and the at least one negative sample.

Another aspect of the disclosed embodiments includes a system for training an impulsive event detection machine-learning model. The system includes a processor and a memory. The memory includes instructions that, when executed by the processor, cause the processor to: receive audio stream data associated with at least one impulse event; receive a label associated with the audio stream data; detect, using an onset detector algorithm, at least one peak of the at least one impulse event; extract at least one positive sample of the audio stream data associated with the at least one impulse event, wherein the at least one positive sample includes a portion of the audio stream data associated with a first time value of the audio stream data; label, the at least one positive sample, with the label associated with the audio stream data to yield at least one labeled positive sample; extract at least one negative sample of the audio stream data associated with the at least one impulse event, wherein the at least one negative sample does not include the portion of the audio stream data associated with the first time value of the audio stream data; augment machine-learning training data based on the at least one labeled positive sample and the at least one negative sample; and train the impulsive event detection machine-learning model using the augmented machine-learning training data.

Another aspect of the disclosed embodiments includes an apparatus for impulsive event detection. The apparatus includes a processor and a memory. The memory includes instructions that, when executed by the processor, cause the processor to: receive audio stream data associated with at least one impulse event; receive a label associated with the audio stream data; detect, using an onset detector algorithm, at least one peak of the at least one impulse event, wherein the onset detector is configured to detect the at least one peak using at least one of an energy envelop associated with the audio stream data, at least one energy floor associated with the audio stream data, at least one energy peak associated with the audio stream data, and at least one dynamic range associated with the audio stream data; extract at least one positive sample of the audio stream data associated with the at least one impulse event, wherein the at least one positive sample includes a portion of the audio stream data associated with a first time value of the audio stream data; label, the at least one positive sample, with the label associated with the audio stream data to yield at least one labeled positive sample; extract at least one negative sample of the audio stream data associated with the at least one impulse event, wherein the at least one negative sample does not include the portion of the audio stream data associated with the first time value of the audio stream data; augment, using at least one of a spectral masking, a spectral shift, at least one background sound, at least one impulse response associated with an acoustic environment, machine-learning training data based on the at least one labeled positive sample and the at least one negative sample; train at least one machine-learning model using the augmented machine-learning training data; and detect, using the at least one machine-learning model, one or more impulse events associated with audio data provided as input to the at least one machine-learning model.

BRIEF DESCRIPTION OF THE DRAWINGS

FIG. 1 generally illustrates a system for training a neural network, according to the principles of the present disclosure.

FIG. 2 generally illustrates a computer-implemented method for training and utilizing a neural network, according the principles of the present disclosure.

FIGS. 3A-3C generally illustrate various impulse events and window selection, according to the principles of the present disclosure.

FIG. 4 is a flow diagram generally illustrating a data augmentation method, according to the principles of the present disclosure.

FIG. 5 depicts a schematic diagram of an interaction between a computer-controlled machine and a control system, according to the principles of the present disclosure.

FIG. 6 depicts a schematic diagram of the control system of FIG. 5 configured to control a vehicle, which may be a partially autonomous vehicle, a fully autonomous vehicle, a partially autonomous robot, or a fully autonomous robot, according to the principles of the present disclosure.

FIG. 7 depicts a schematic diagram of the control system of FIG. 5 configured to control a manufacturing machine, such as a punch cutter, a cutter or a gun drill, of a manufacturing system, such as part of a production line.

FIG. 8 depicts a schematic diagram of the control system of FIG. 5 configured to control a power tool, such as a power drill or driver that has an at least partially autonomous mode.

FIG. 9 depicts a schematic diagram of the control system of FIG. 5 configured to control an automated personal assistant.

FIG. 10 depicts a schematic diagram of the control system of FIG. 5 configured to control a monitoring system, such as a control access system or a surveillance system.

FIG. 11 depicts a schematic diagram of the control system of FIG. 5 configured to control an imaging system, for example an MRI apparatus, x-ray imaging apparatus or ultrasonic apparatus.

DETAILED DESCRIPTION

Embodiments of the present disclosure are described herein. It is to be understood, however, that the disclosed embodiments are merely examples and other embodiments can take various and alternative forms. The figures are not necessarily to scale; some features could be exaggerated or minimized to show details of particular components. Therefore, specific structural and functional details disclosed herein are not to be interpreted as limiting, but merely as a representative basis for teaching one skilled in the art to variously employ the embodiments. As those of ordinary skill in the art will understand, various features illustrated and described with reference to any one of the figures can be combined with features illustrated in one or more other figures to produce embodiments that are not explicitly illustrated or described. The combinations of features illustrated provide representative embodiments for typical applications. Various combinations and modifications of the features consistent with the teachings of this disclosure, however, could be desired for particular applications or implementations.

As described, the use of machine-learning models to detect and recognize various impulsive sounds (e.g., gunshots, vehicle collisions, and the like) in audio recordings and real-time acquisitions has several useful applications ranging from physical security to content retrieval. Data augmentation for audio event detection is commonly used in the scientific literature to increase artificial intelligence based machine-learning model robustness and sensitivity. Typically, such systems rely on audio data augmentation techniques including time shifting, frequency shifting, noise addition, time-frequency masking, and the like. Additionally, such systems are typically directly dependent on the amount, the variety, and the quality of the samples provided during a training phase. For audio classification systems, this aspect is even more important, as the amount of labeled audio samples is typically at least one or two orders of magnitude smaller than for other domain such as images or text. Sound event classification systems are typically pre-trained on a large corpus of weakly-labeled audio samples (e.g., without temporal labeling), then fine-tuned to the specific application. The fine-tuning stage is especially sensitive to the quality of the input samples.

However, successful deployment of such machine-learning models may be challenging, as different types of impulsive sounds share common temporal and spectral characteristics that may be dominated by the surrounding acoustic environment (e.g., rather than the impact event type itself). As such, the output of such a machine-learning model may include a relatively high false positive rate that may significantly reduce a practical usefulness of such systems.

Accordingly, systems and methods, such as those described herein, configured to improve mitigation of false positive impulse event detection, may be desirable. In some embodiments, the systems and methods described herein may be configured to provide data augmentation for machine-learning training data that is tailored at augmenting the available recordings of an impulsive sound of interest to enforce false positive resilience when various data driven technologies (e.g., neural networks, machine-learning models, and the like) is used to recognize the target sound.

In some embodiments, the systems and methods described herein may be configured to train a data-driven technique (e.g., neural networks, machine-learning models, and the like) to classify an input sound into M categories. When training neural networks for sound event detection, typically the input to the network is a fixed-duration audio window. At an inference time, a machine-learning model is provided with windows of the same length, typically with a hop size much shorter than the window length, (e.g., a window of 2 seconds fed every 0.2 seconds, or any other suitable length). This typically provides multiple views over time for the same sound to the machine-learning model.

The systems and methods described herein may be configured to recognize impulsive sounds in audio data provided to a corresponding machine-learning model. The systems and methods described herein may be configured to characterize impulsive sounds by two phases: a fast transient phase (e.g., the impulse, which may be referred to as the onset or peak) and a tail phase. The systems and methods described herein may be configured to the phases identify a type of an impulsive sound. For example, as is generally illustrated in FIG. 3A, a first impact even (e.g., a gunshot or other suitable impact event), generally illustrated as impact event 1, and a second impact event (e.g., a glass breaking or other suitable impact event), generally illustrated as impact event 2, may sound very similar if an observer only hears the transient phase, but may sound very different if the observer hears each tail phase of the respective impulsive sounds. Additionally, or alternatively, impact event 1 and a third impact event (e.g., a slammed door or other suitable impact event), generally illustrated as impact event 3, may sound similarly in respective tail phases (e.g., if both are recorded in the same acoustic environment) but may present different transients phases

In some embodiments, the systems and methods described herein may be configured to, given a recording containing one or more impulsive sounds of interest, generate a set of positive windows, (e.g., samples that may be classified as the sound of interest), and a set of negative windows (e.g., samples that may be classified as non-interesting). The systems and methods described herein may be configured to increase the accuracy of sound event detection for impulsive sounds belonging to a specific class, while rejecting other impulsive sounds. For example, the systems and methods described herein may be configured to train a gunshot detector that may reject all other type of impulsive sounds, (e.g., glass breaks, fireworks, dropped boxes, slammed doors, and the like).

The systems and methods described herein may be configured to generate a set of positive and a set of negative windows for each available sample containing an impulsive sound of interest. The systems and methods described herein may be configured to use augmentation schemes to apply random window extraction (e.g., random time shifting), to provide training samples labeled as a specific impulse event (e.g., a gunshot or other suitable impulse event) that contain only a portion of the sound of interest, (e.g., only the tail, only the onset without much tail, the final part of the tail, silence before the event together with a small portion of the impulse, and the like).

The systems and methods described herein may be configured to generate negative samples whenever the window does not include the impulse of the sound together with a sufficient context around it. The systems and methods described herein may be configured to learn that a specific impulsive sound (e.g., a gunshot), is composed of a certain impulse followed by a certain tail, while the tail or the impulse alone are not enough to characterize the type of impulsive sound.

In some embodiments, the systems and methods described herein may be configured to, given an audio recording and the associated label, as is generally illustrated in FIGS. 3A-3C, detect the peak(s) of the impulsive event(s) in the input sample (e.g., an audio recording) using an onset detector (e.g., which may include an onset detector algorithm executable by a processor, such as those described herein or any suitable processor, processing device, and/or computing device). The systems and methods described herein may be configured to, for each identified peak at T_(p), extract a set of positive windows (e.g., WIN 1, WIN 2, and WIN 3), such that each window contains at least T_(b) seconds before the peak and at least T_(a) seconds after the peak. The positive samples inherit the label of the original recording. T_(b) and T_(a) are selected based on the machine-learning model to be trained. For example, for a deep neural network with an input of 2 seconds, reference values for T_(b) and T_(a) are 100 milliseconds and 1.5 seconds, respectively. It should be understood that T_(b) and T_(a) may be any suitable value for any suitable machine-learning model or neural network, given any suitable input sample.

The systems and methods described herein may be configured to, for each identified peak, extract a set of negative windows (e.g., WIN 4, WIN 5, WIN 6, and WIN 7), such that each window does not meet at least one of the criteria defined for positive windows. The negative samples are associated with a different label, (e.g. “other sound events”). It should be understood that the systems and methods described herein may be configured to any suitable number of positive windows and/or negative windows.

The systems and methods described herein may be configured to collect all the positive and negative samples, together with other samples used for training. The systems and methods described herein may be configured to perform various other data augmentations based on the machine-learning model to be trained, such as: spectral masking and spectral shift (e.g., along frequencies); mixing with several background sounds (e.g., wind, traffic, road noises, and the like); and the like.

The systems and methods described herein may be configured to apply the impulse response from a real and/or simulated acoustic environment. The systems and methods described herein may be configured to train the machine-learning model with backpropagation. For example, the systems and methods described herein may be configured to, given a digital audio recording represented by a sequence x[n], extract from x a series of windows w_(i)[n] of fixed duration N samples at a fixed hop size H samples. The systems and methods described herein may be configured to compute the energy envelope e[i], which may be defined as:

${e\lbrack i\rbrack} = {\max\limits_{j \in {\{{0,\ldots,{N - 1}}\}}}{❘{x\left\lbrack {{i \cdot H} + j} \right\rbrack}❘}}$

The systems and methods described herein may be configured to define the energy floor e_(f) as the 30% percentile (or other suitable value) of the energy envelope. The systems and methods described herein may be configured to define the energy peak e_(p) as the maximum value of e[i]. The systems and methods described herein may be configured to define a dynamic range α∈(0,1). The systems and methods described herein may be configured to extract events onsets O_(n)={i|e[i+1]−e[i]>e_(p)·α}. The systems and methods described herein may be configured to extract events offsets O_(f)={i|e[i+1]−e[i]>e_(f)·1/α}. The systems and methods described herein may be configured to group onsets and offsets G={(i_(n),j_(m))|j_(m)>i_(n), i_(n+1)>j_(m)∀i∈O_(n), j∈O_(f)}. The set of peaks is obtained from the grouped onsets as P={i·H∀i∈G}.

As is generally illustrated in FIG. 3C, the systems and methods described herein may be configured to, given windows of fixed duration, any possible window strictly included in the “positive window area” is a positive window, thus inherits the original recording label. Any window that doesn't fit entirely within the “positive window area” is a negative window.

In some embodiments, the systems and methods described herein may be configured to receive audio stream data associated with at least one impulse event. The systems and methods described herein may be configured to receive a label associated with the audio stream data. The systems and methods described herein may be configured to detect, using an onset detector, at least one peak of the at least one impulse event. The onset detector may be configured to detect the at least one peak using at least one of an energy envelop associated with the audio stream data, at least one energy floor associated with the audio stream data, at least one energy peak associated with the audio stream data, and at least one dynamic range associated with the audio stream data, other suitable data or information, or a combination thereof. The systems and methods described herein may be configured to extract at least one positive sample of the audio stream data associated with the at least one impulse event. The at least one positive sample may include a portion of the audio stream data associated with a first time value of the audio stream data.

The systems and methods described herein may be configured to apply, to the at least one positive sample, the label associated with the audio stream data. The at least one positive sample may extend a first period before the first time value and a second period after the first time value. The systems and methods described herein may be configured to extract at least one negative sample of the audio stream data associated with the at least one impulse event. The at least one negative sample may not include the portion of the audio stream data associated with the first time value of the audio stream data. The at least one negative sample may include a label that is different from the label associated with the audio stream data. The at least one negative sample and the at least one positive sample may not overlap.

The systems and methods described herein may be configured to augment training data based on the at least one positive sample and the at least one negative sample. The systems and methods described herein may be configured to augment the training data using at least one of a spectral masking, a spectral shift, at least one background sound, at least one impulse response associated with an acoustic environment, other suitable augmentation techniques, or a combination thereof. The systems and methods described herein may be configured to train, (e.g., using at least one backpropagation technique or other suitable technique) at least one machine-learning model using the augmented training data. The systems and methods described herein may be configured to detect, using the at least one machine-learning model, one or more impulse events associated with audio data provided as input to the at least one machine-learning model. The at least one machine-learning model may be configured to detect, at least, a class of sound associated with the at least one impulse event.

FIG. 1 shows a system 100 for training a neural network. The system 100 may comprise an input interface for accessing training data 102 for the neural network. For example, as illustrated in FIG. 1 , the input interface may be constituted by a data storage interface 104 which may access the training data 102 from a data storage 106. For example, the data storage interface 104 may be a memory interface or a persistent storage interface, e.g., a hard disk or an SSD interface, but also a personal, local or wide area network interface such as a Bluetooth, Zigbee or Wi-Fi interface or an ethernet or fiberoptic interface. The data storage 106 may be an internal data storage of the system 100, such as a hard drive or SSD, but also an external data storage, e.g., a network-accessible data storage.

In some embodiments, the data storage 106 may further comprise a data representation 108 of an untrained version of the neural network which may be accessed by the system 100 from the data storage 106. It will be appreciated, however, that the training data 102 and the data representation 108 of the untrained neural network may also each be accessed from a different data storage, e.g., via a different subsystem of the data storage interface 104. Each subsystem may be of a type as is described above for the data storage interface 104.

In some embodiments, the data representation 108 of the untrained neural network may be internally generated by the system 100 on the basis of design parameters for the neural network, and therefore may not explicitly be stored on the data storage 106. The system 100 may further comprise a processor subsystem 110 which may be configured to, during operation of the system 100, provide an iterative function as a substitute for a stack of layers of the neural network to be trained. Here, respective layers of the stack of layers being substituted may have mutually shared weights and may receive as input an output of a previous layer, or for a first layer of the stack of layers, an initial activation, and a part of the input of the stack of layers.

The processor subsystem 110 may be further configured to iteratively train the neural network using the training data 102. Here, an iteration of the training by the processor subsystem 110 may comprise a forward propagation part and a backward propagation part. The processor subsystem 110 may be configured to perform the forward propagation part by, amongst other operations defining the forward propagation part which may be performed, determining an equilibrium point of the iterative function at which the iterative function converges to a fixed point, wherein determining the equilibrium point comprises using a numerical root-finding algorithm to find a root solution for the iterative function minus its input, and by providing the equilibrium point as a substitute for an output of the stack of layers in the neural network.

The system 100 may further comprise an output interface for outputting a data representation 112 of the trained neural network, this data may also be referred to as trained model data 112. For example, as also illustrated in FIG. 1 , the output interface may be constituted by the data storage interface 104, with said interface being in these embodiments an input/output (‘IO’) interface, via which the trained model data 112 may be stored in the data storage 106. For example, the data representation 108 defining the ‘untrained’ neural network may during or after the training be replaced, at least in part by the data representation 112 of the trained neural network, in that the parameters of the neural network, such as weights, hyperparameters and other types of parameters of neural networks, may be adapted to reflect the training on the training data 102. This is also illustrated in FIG. 1 by the reference numerals 108, 112 referring to the same data record on the data storage 106. In some embodiments, the data representation 112 may be stored separately from the data representation 108 defining the ‘untrained’ neural network. In some embodiments, the output interface may be separate from the data storage interface 104, but may in general be of a type as described above for the data storage interface 104.

FIG. 2 depicts a data annotation/augmentation system 200 to implement a system for annotating and/or augment data. The data annotation system 200 may include at least one computing system 202. The computing system 202 may include at least one processor 204 that is operatively connected to a memory unit 208. The processor 204 may include one or more integrated circuits that implement the functionality of a central processing unit (CPU) 206. The CPU 206 may be a commercially available processing unit that implements an instruction stet such as one of the x86, ARM, Power, or MIPS instruction set families.

During operation, the CPU 206 may execute stored program instructions that are retrieved from the memory unit 208. The stored program instructions may include software that controls operation of the CPU 206 to perform the operation described herein. In some embodiments, the processor 204 may be a system on a chip (SoC) that integrates functionality of the CPU 206, the memory unit 208, a network interface, and input/output interfaces into a single integrated device. The computing system 202 may implement an operating system for managing various aspects of the operation.

The memory unit 208 may include volatile memory and non-volatile memory for storing instructions and data. The non-volatile memory may include solid-state memories, such as NAND flash memory, magnetic and optical storage media, or any other suitable data storage device that retains data when the computing system 202 is deactivated or loses electrical power. The volatile memory may include static and dynamic random-access memory (RAM) that stores program instructions and data. For example, the memory unit 208 may store a machine-learning model 210 or algorithm, a training dataset 212 for the machine-learning model 210, raw source dataset 216.

The computing system 202 may include a network interface device 222 that is configured to provide communication with external systems and devices. For example, the network interface device 222 may include a wired and/or wireless Ethernet interface as defined by Institute of Electrical and Electronics Engineers (IEEE) 802.11 family of standards. The network interface device 222 may include a cellular communication interface for communicating with a cellular network (e.g., 3G, 4G, 5G). The network interface device 222 may be further configured to provide a communication interface to an external network 224 or cloud.

The external network 224 may be referred to as the world-wide web or the Internet. The external network 224 may establish a standard communication protocol between computing devices. The external network 224 may allow information and data to be easily exchanged between computing devices and networks. One or more servers 230 may be in communication with the external network 224.

The computing system 202 may include an input/output (I/O) interface 220 that may be configured to provide digital and/or analog inputs and outputs. The I/O interface 220 may include additional serial interfaces for communicating with external devices (e.g., Universal Serial Bus (USB) interface).

The computing system 202 may include a human-machine interface (HMI) device 218 that may include any device that enables the system 200 to receive control input. Examples of input devices may include human interface inputs such as keyboards, mice, touchscreens, voice input devices, and other similar devices. The computing system 202 may include a display device 232. The computing system 202 may include hardware and software for outputting graphics and text information to the display device 232. The display device 232 may include an electronic display screen, projector, printer or other suitable device for displaying information to a user or operator. The computing system 202 may be further configured to allow interaction with remote HMI and remote display devices via the network interface device 222.

The system 200 may be implemented using one or multiple computing systems. While the example depicts a single computing system 202 that implements all of the described features, it is intended that various features and functions may be separated and implemented by multiple computing units in communication with one another. The particular system architecture selected may depend on a variety of factors.

The system 200 may implement a machine-learning algorithm 210 that is configured to analyze the raw source dataset 216. The raw source dataset 216 may include raw or unprocessed sensor data that may be representative of an input dataset for a machine-learning system. The raw source dataset 216 may include video, video segments, images, text-based information, and raw or partially processed sensor data (e.g., radar map of objects). In some embodiments, the machine-learning algorithm 210 may be a neural network algorithm that is designed to perform a predetermined function. For example, the neural network algorithm may be configured in automotive applications to identify pedestrians in video images.

The computer system 200 may store a training dataset 212 for the machine-learning algorithm 210. The training dataset 212 may represent a set of previously constructed data for training the machine-learning algorithm 210. The training dataset 212 may be used by the machine-learning algorithm 210 to learn weighting factors associated with a neural network algorithm. The training dataset 212 may include a set of source data that has corresponding outcomes or results that the machine-learning algorithm 210 tries to duplicate via the learning process. In this example, the training dataset 212 may include source videos with and without pedestrians and corresponding presence and location information. The source videos may include various scenarios in which pedestrians are identified.

The machine-learning algorithm 210 may be operated in a learning mode using the training dataset 212 as input. The machine-learning algorithm 210 may be executed over a number of iterations using the data from the training dataset 212. With each iteration, the machine-learning algorithm 210 may update internal weighting factors based on the achieved results. For example, the machine-learning algorithm 210 can compare output results (e.g., annotations) with those included in the training dataset 212. Since the training dataset 212 includes the expected results, the machine-learning algorithm 210 can determine when performance is acceptable. After the machine-learning algorithm 210 achieves a predetermined performance level (e.g., 100% agreement with the outcomes associated with the training dataset 212), the machine-learning algorithm 210 may be executed using data that is not in the training dataset 212. The trained machine-learning algorithm 210 may be applied to new datasets to generate annotated data.

The machine-learning algorithm 210 may be configured to identify a particular feature in the raw source data 216. The raw source data 216 may include a plurality of instances or input dataset for which annotation results are desired. For example, the machine-learning algorithm 210 may be configured to identify the presence of a pedestrian in video images and annotate the occurrences. The machine-learning algorithm 210 may be programmed to process the raw source data 216 to identify the presence of the particular features. The machine-learning algorithm 210 may be configured to identify a feature in the raw source data 216 as a predetermined feature (e.g., pedestrian). The raw source data 216 may be derived from a variety of sources. For example, the raw source data 216 may be actual input data collected by a machine-learning system. The raw source data 216 may be machine generated for testing the system. As an example, the raw source data 216 may include raw video images from a camera.

In the example, the machine-learning algorithm 210 may process raw source data 216 and output an indication of a representation of an image. The output may also include augmented representation of the image. A machine-learning algorithm 210 may generate a confidence level or factor for each output generated. For example, a confidence value that exceeds a predetermined high-confidence threshold may indicate that the machine-learning algorithm 210 is confident that the identified feature corresponds to the particular feature. A confidence value that is less than a low-confidence threshold may indicate that the machine-learning algorithm 210 has some uncertainty that the particular feature is present.

In some embodiments, the system 200 may be configured to train the machine-learning model 210 to classify impulsive sounds. For example, the system 200 may receive audio stream data associated with at least one impulse event. The system 200 may receive a label associated with the audio stream data. The system 200 may detect, using an onset detector, at least one peak of the at least one impulse event. The onset detector may be configured to detect the at least one peak using at least one of an energy envelop associated with the audio stream data, at least one energy floor associated with the audio stream data, at least one energy peak associated with the audio stream data, and at least one dynamic range associated with the audio stream data, other suitable data or information, or a combination thereof.

The system 200 may extract at least one positive sample of the audio stream data associated with the at least one impulse event. The at least one positive sample may include a portion of the audio stream data associated with a first time value of the audio stream data. The system 200 may apply, to the at least one positive sample, the label associated with the audio stream data. The at least one positive sample may extend a first period before the first time value and a second period after the first time value. The system 200 may extract at least one negative sample of the audio stream data associated with the at least one impulse event. The at least one negative sample may not include the portion of the audio stream data associated with the first time value of the audio stream data. The at least one negative sample may include a label that is different from the label associated with the audio stream data. The at least one negative sample and the at least one positive sample may not overlap.

The system 200 may augment training data based on the at least one positive sample and the at least one negative sample. The system 200 may augment the training data using at least one of a spectral masking, a spectral shift, at least one background sound, at least one impulse response associated with an acoustic environment, other suitable augmentation techniques, or a combination thereof. The system 200 may train, (e.g., using at least one backpropagation technique or other suitable technique) the machine-learning model 210 using the augmented training data. The system 200 may detect, using the machine-learning model 210, one or more impulse events associated with audio data provided as input to the machine-learning model 210. The machine-learning model 210 may be configured to detect, at least, a class of sound associated with the at least one impulse event. Additionally, or alternatively, the machine-learning model 210 may be configured to perform any suitable function, such as those described herein with respect to FIGS. 6-11 .

FIG. 4 is a flow diagram generally illustrating a data augmentation method 400 according to the principles of the present disclosure. At 402, the method 400 receives audio stream data associated with at least one impulse event.

At 404, the method 400 receives a label associated with the audio stream data.

At 406, the method 400 detects, using an onset detector, at least one peak of the at least one impulse event.

At 408, the method 400 extracts at least one positive sample of the audio stream data associated with the at least one impulse event. The at least one positive sample may include a portion of the audio stream data associated with a first time value of the audio stream data.

At 410, the method 400 applies, to the at least one positive sample, the label associated with the audio stream data.

At 412, the method 400 extracts at least one negative sample of the audio stream data associated with the at least one impulse event. The at least one negative sample may not include the portion of the audio stream data associated with the first time value of the audio stream data.

At 414, the method 400 augments training data based on the at least one positive sample and the at least one negative sample.

At 416, the method 400 trains at least one machine-learning model using the augmented training data. The method 400 may include using the at least one machine-learning model to detect one or more impulsive events using audio data provided to the at least one machine-learning model.

FIG. 5 depicts a schematic diagram of an interaction between computer-controlled machine 500 and control system 502. Computer-controlled machine 500 includes actuator 504 and sensor 506. Actuator 504 may include one or more actuators and sensor 506 may include one or more sensors. Sensor 506 is configured to sense a condition of computer-controlled machine 500. Sensor 506 may be configured to encode the sensed condition into sensor signals 508 and to transmit sensor signals 508 to control system 502. Non-limiting examples of sensor 506 include video, radar, LiDAR, ultrasonic and motion sensors. In some embodiments, sensor 506 is an optical sensor configured to sense optical images of an environment proximate to computer-controlled machine 500.

Control system 502 is configured to receive sensor signals 508 from computer-controlled machine 500. As set forth below, control system 502 may be further configured to compute actuator control commands 510 depending on the sensor signals and to transmit actuator control commands 510 to actuator 504 of computer-controlled machine 500.

As shown in FIG. 5 , control system 502 includes receiving unit 512. Receiving unit 512 may be configured to receive sensor signals 508 from sensor 506 and to transform sensor signals 508 into input signals x. In an alternative embodiment, sensor signals 508 are received directly as input signals x without receiving unit 512. Each input signal x may be a portion of each sensor signal 508. Receiving unit 512 may be configured to process each sensor signal 508 to product each input signal x. Input signal x may include data corresponding to an image recorded by sensor 506.

Control system 502 includes classifier 514. Classifier 514 may be configured to classify input signals x into one or more labels using a machine-learning (ML) algorithm, such as a neural network described above. Classifier 514 is configured to be parametrized by parameters, such as those described above (e.g., parameter θ). Parameters θ may be stored in and provided by non-volatile storage 516. Classifier 514 is configured to determine output signals y from input signals x. Each output signal y includes information that assigns one or more labels to each input signal x. Classifier 514 may transmit output signals y to conversion unit 518. Conversion unit 518 is configured to covert output signals y into actuator control commands 510. Control system 502 is configured to transmit actuator control commands 510 to actuator 504, which is configured to actuate computer-controlled machine 500 in response to actuator control commands 510. In some embodiments, actuator 504 is configured to actuate computer-controlled machine 500 based directly on output signals y.

Upon receipt of actuator control commands 510 by actuator 504, actuator 504 is configured to execute an action corresponding to the related actuator control command 510. Actuator 504 may include a control logic configured to transform actuator control commands 510 into a second actuator control command, which is utilized to control actuator 504. In one or more embodiments, actuator control commands 510 may be utilized to control a display instead of or in addition to an actuator.

In some embodiments, control system 502 includes sensor 506 instead of or in addition to computer-controlled machine 500 including sensor 506. Control system 502 may also include actuator 504 instead of or in addition to computer-controlled machine 500 including actuator 504.

As shown in FIG. 5 , control system 502 also includes processor 520 and memory 522. Processor 520 may include one or more processors. Memory 522 may include one or more memory devices. The classifier 514 (e.g., ML algorithms) of one or more embodiments may be implemented by control system 502, which includes non-volatile storage 516, processor 520 and memory 522.

Non-volatile storage 516 may include one or more persistent data storage devices such as a hard drive, optical drive, tape drive, non-volatile solid-state device, cloud storage or any other device capable of persistently storing information. Processor 520 may include one or more devices selected from high-performance computing (HPC) systems including high-performance cores, microprocessors, micro-controllers, digital signal processors, microcomputers, central processing units, field programmable gate arrays, programmable logic devices, state machines, logic circuits, analog circuits, digital circuits, or any other devices that manipulate signals (analog or digital) based on computer-executable instructions residing in memory 522. Memory 522 may include a single memory device or a number of memory devices including, but not limited to, random access memory (RAM), volatile memory, non-volatile memory, static random access memory (SRAM), dynamic random access memory (DRAM), flash memory, cache memory, or any other device capable of storing information.

Processor 520 may be configured to read into memory 522 and execute computer-executable instructions residing in non-volatile storage 516 and embodying one or more ML algorithms and/or methodologies of one or more embodiments. Non-volatile storage 516 may include one or more operating systems and applications. Non-volatile storage 516 may store compiled and/or interpreted from computer programs created using a variety of programming languages and/or technologies, including, without limitation, and either alone or in combination, Java, C, C++, C #, Objective C, Fortran, Pascal, Java Script, Python, Perl, and PL/SQL.

Upon execution by processor 520, the computer-executable instructions of non-volatile storage 516 may cause control system 502 to implement one or more of the ML algorithms and/or methodologies as disclosed herein. Non-volatile storage 516 may also include ML data (including data parameters) supporting the functions, features, and processes of the one or more embodiments described herein.

The program code embodying the algorithms and/or methodologies described herein is capable of being individually or collectively distributed as a program product in a variety of different forms. The program code may be distributed using a computer readable storage medium having computer readable program instructions thereon for causing a processor to carry out aspects of one or more embodiments. Computer readable storage media, which is inherently non-transitory, may include volatile and non-volatile, and removable and non-removable tangible media implemented in any method or technology for storage of information, such as computer-readable instructions, data structures, program modules, or other data. Computer readable storage media may further include RAM, ROM, erasable programmable read-only memory (EPROM), electrically erasable programmable read-only memory (EEPROM), flash memory or other solid state memory technology, portable compact disc read-only memory (CD-ROM), or other optical storage, magnetic cassettes, magnetic tape, magnetic disk storage or other magnetic storage devices, or any other medium that can be used to store the desired information and which can be read by a computer. Computer readable program instructions may be downloaded to a computer, another type of programmable data processing apparatus, or another device from a computer readable storage medium or to an external computer or external storage device via a network.

Computer readable program instructions stored in a computer readable medium may be used to direct a computer, other types of programmable data processing apparatus, or other devices to function in a particular manner, such that the instructions stored in the computer readable medium produce an article of manufacture including instructions that implement the functions, acts, and/or operations specified in the flowcharts or diagrams. In certain alternative embodiments, the functions, acts, and/or operations specified in the flowcharts and diagrams may be re-ordered, processed serially, and/or processed concurrently consistent with one or more embodiments. Moreover, any of the flowcharts and/or diagrams may include more or fewer nodes or blocks than those illustrated consistent with one or more embodiments.

The processes, methods, or algorithms can be embodied in whole or in part using suitable hardware components, such as Application Specific Integrated Circuits (ASICs), Field-Programmable Gate Arrays (FPGAs), state machines, controllers or other hardware components or devices, or a combination of hardware, software and firmware components.

FIG. 6 depicts a schematic diagram of control system 502 configured to control vehicle 600, which may be an at least partially autonomous vehicle or an at least partially autonomous robot. Vehicle 600 includes actuator 504 and sensor 506. Sensor 506 may include one or more video sensors, cameras, radar sensors, ultrasonic sensors, LiDAR sensors, and/or position sensors (e.g. GPS). One or more of the one or more specific sensors may be integrated into vehicle 600. Alternatively or in addition to one or more specific sensors identified above, sensor 506 may include a software module configured to, upon execution, determine a state of actuator 504. One non-limiting example of a software module includes a weather information software module configured to determine a present or future state of the weather proximate vehicle 600 or other location.

Classifier 514 of control system 502 of vehicle 600 may be configured to detect objects in the vicinity of vehicle 600 dependent on input signals x. In such an embodiment, output signal y may include information characterizing the vicinity of objects to vehicle 600. Actuator control command 510 may be determined in accordance with this information. The actuator control command 510 may be used to avoid collisions with the detected objects.

In some embodiments, the vehicle 600 is an at least partially autonomous vehicle, actuator 504 may be embodied in a brake, a propulsion system, an engine, a drivetrain, or a steering of vehicle 600. Actuator control commands 510 may be determined such that actuator 504 is controlled such that vehicle 600 avoids collisions with detected objects. Detected objects may also be classified according to what classifier 514 deems them most likely to be, such as pedestrians or trees. The actuator control commands 510 may be determined depending on the classification. In a scenario where an adversarial attack may occur, the system described above may be further trained to better detect objects or identify a change in lighting conditions or an angle for a sensor or camera on vehicle 600. In some embodiments where vehicle 600 is an at least partially autonomous robot, vehicle 600 may be a mobile robot that is configured to carry out one or more functions, such as flying, swimming, diving and stepping. The mobile robot may be an at least partially autonomous lawn mower or an at least partially autonomous cleaning robot. In such embodiments, the actuator control command 510 may be determined such that a propulsion unit, steering unit and/or brake unit of the mobile robot may be controlled such that the mobile robot may avoid collisions with identified objects.

In some embodiments, vehicle 600 is an at least partially autonomous robot in the form of a gardening robot. In such embodiment, vehicle 600 may use an optical sensor as sensor 506 to determine a state of plants in an environment proximate vehicle 600. Actuator 504 may be a nozzle configured to spray chemicals. Depending on an identified species and/or an identified state of the plants, actuator control command 510 may be determined to cause actuator 504 to spray the plants with a suitable quantity of suitable chemicals.

Vehicle 600 may be an at least partially autonomous robot in the form of a domestic appliance. Non-limiting examples of domestic appliances include a washing machine, a stove, an oven, a microwave, or a dishwasher. In such a vehicle 600, sensor 506 may be an optical sensor configured to detect a state of an object which is to undergo processing by the household appliance. For example, in the case of the domestic appliance being a washing machine, sensor 506 may detect a state of the laundry inside the washing machine. Actuator control command 510 may be determined based on the detected state of the laundry.

FIG. 7 depicts a schematic diagram of control system 502 configured to control system 700 (e.g., manufacturing machine), such as a punch cutter, a cutter or a gun drill, of manufacturing system 702, such as part of a production line. Control system 502 may be configured to control actuator 504, which is configured to control system 700 (e.g., manufacturing machine).

Sensor 506 of system 700 (e.g., manufacturing machine) may be an optical sensor configured to capture one or more properties of manufactured product 704. Classifier 514 may be configured to determine a state of manufactured product 704 from one or more of the captured properties. Actuator 504 may be configured to control system 700 (e.g., manufacturing machine) depending on the determined state of manufactured product 704 for a subsequent manufacturing step of manufactured product 704. The actuator 504 may be configured to control functions of system 700 (e.g., manufacturing machine) on subsequent manufactured product 706 of system 700 (e.g., manufacturing machine) depending on the determined state of manufactured product 704.

FIG. 8 depicts a schematic diagram of control system 502 configured to control power tool 800, such as a power drill or driver, that has an at least partially autonomous mode. Control system 502 may be configured to control actuator 504, which is configured to control power tool 800.

Sensor 506 of power tool 800 may be an optical sensor configured to capture one or more properties of work surface 802 and/or fastener 804 being driven into work surface 802. Classifier 514 may be configured to determine a state of work surface 802 and/or fastener 804 relative to work surface 802 from one or more of the captured properties. The state may be fastener 804 being flush with work surface 802. The state may alternatively be hardness of work surface 802. Actuator 504 may be configured to control power tool 800 such that the driving function of power tool 800 is adjusted depending on the determined state of fastener 804 relative to work surface 802 or one or more captured properties of work surface 802. For example, actuator 504 may discontinue the driving function if the state of fastener 804 is flush relative to work surface 802. As another non-limiting example, actuator 504 may apply additional or less torque depending on the hardness of work surface 802.

FIG. 9 depicts a schematic diagram of control system 502 configured to control automated personal assistant 900. Control system 502 may be configured to control actuator 504, which is configured to control automated personal assistant 900. Automated personal assistant 900 may be configured to control a domestic appliance, such as a washing machine, a stove, an oven, a microwave or a dishwasher.

Sensor 506 may be an optical sensor and/or an audio sensor. The optical sensor may be configured to receive video images of gestures 904 of user 902. The audio sensor may be configured to receive a voice command of user 902.

Control system 502 of automated personal assistant 900 may be configured to determine actuator control commands 510 configured to control system 502. Control system 502 may be configured to determine actuator control commands 510 in accordance with sensor signals 508 of sensor 506. Automated personal assistant 900 is configured to transmit sensor signals 508 to control system 502. Classifier 514 of control system 502 may be configured to execute a gesture recognition algorithm to identify gesture 904 made by user 902, to determine actuator control commands 510, and to transmit the actuator control commands 510 to actuator 504. Classifier 514 may be configured to retrieve information from non-volatile storage in response to gesture 904 and to output the retrieved information in a form suitable for reception by user 902.

FIG. 10 depicts a schematic diagram of control system 502 configured to control monitoring system 1000. Monitoring system 1000 may be configured to physically control access through door 1002. Sensor 506 may be configured to detect a scene that is relevant in deciding whether access is granted. Sensor 506 may be an optical sensor configured to generate and transmit image and/or video data. Such data may be used by control system 502 to detect a person's face.

Classifier 514 of control system 502 of monitoring system 1000 may be configured to interpret the image and/or video data by matching identities of known people stored in non-volatile storage 516, thereby determining an identity of a person. Classifier 514 may be configured to generate and an actuator control command 510 in response to the interpretation of the image and/or video data. Control system 502 is configured to transmit the actuator control command 510 to actuator 504. In this embodiment, actuator 504 may be configured to lock or unlock door 1002 in response to the actuator control command 510. In some embodiments, a non-physical, logical access control is also possible.

Monitoring system 1000 may also be a surveillance system. In such an embodiment, sensor 506 may be an optical sensor configured to detect a scene that is under surveillance and control system 502 is configured to control display 1004. Classifier 514 is configured to determine a classification of a scene, e.g. whether the scene detected by sensor 506 is suspicious. Control system 502 is configured to transmit an actuator control command 510 to display 1004 in response to the classification. Display 1004 may be configured to adjust the displayed content in response to the actuator control command 510. For instance, display 1004 may highlight an object that is deemed suspicious by classifier 514. Utilizing an embodiment of the system disclosed, the surveillance system may predict objects at certain times in the future showing up.

FIG. 11 depicts a schematic diagram of control system 502 configured to control imaging system 1100, for example an MRI apparatus, x-ray imaging apparatus or ultrasonic apparatus. Sensor 506 may, for example, be an imaging sensor. Classifier 514 may be configured to determine a classification of all or part of the sensed image. Classifier 514 may be configured to determine or select an actuator control command 510 in response to the classification obtained by the trained neural network. For example, classifier 514 may interpret a region of a sensed image to be potentially anomalous. In this case, actuator control command 510 may be determined or selected to cause display 1102 to display the imaging and highlighting the potentially anomalous region.

In some embodiments, a method for data augmentation includes receiving audio stream data associated with at least one impulse event, receiving a label associated with the audio stream data, and detecting, using an onset detector, at least one peak of the at least one impulse event. The method also includes extracting at least one positive sample of the audio stream data associated with the at least one impulse event, wherein the at least one positive sample includes a portion of the audio stream data associated with a first time value of the audio stream data. The method also includes applying, to the at least one positive sample, the label associated with the audio stream data and extracting at least one negative sample of the audio stream data associated with the at least one impulse event, wherein the at least one negative sample does not include the portion of the audio stream data associated with the first time value of the audio stream data. The method also includes augmenting training data based on the at least one positive sample and the at least one negative sample and training at least one machine-learning model using the augmented training data.

In some embodiments, the at least one positive sample extends a first period before the first time value and a second period after the first time value. In some embodiments, the at least one negative sample includes a label different from the label associated with the audio stream data. In some embodiments, the at least one negative sample and the at least one positive sample do not overlap. In some embodiments, the at least one machine-learning model is configured to detect, at least, a class of sound associated with the at least one impulse event. In some embodiments, training the at least one machine-learning model using the augmented training data includes training the at least one machine-learning model with at least one backpropagation technique. In some embodiments, the method also includes augmenting the training data using at least one of a spectral masking, a spectral shift, at least one background sound, at least one impulse response associated with an acoustic environment. In some embodiments, the onset detector is configured to detect the at least one peak using at least one of an energy envelop associated with the audio stream data, at least one energy floor associated with the audio stream data, at least one energy peak associated with the audio stream data, and at least one dynamic range associated with the audio stream data.

In some embodiments, a system for data augmentation includes a processor and a memory. The memory includes instructions that, when executed by the processor, cause the processor to: receive audio stream data associated with at least one impulse event; receive a label associated with the audio stream data; detect, using an onset detector, at least one peak of the at least one impulse event; extract at least one positive sample of the audio stream data associated with the at least one impulse event, wherein the at least one positive sample includes a portion of the audio stream data associated with a first time value of the audio stream data; apply, to the at least one positive sample, the label associated with the audio stream data; extract at least one negative sample of the audio stream data associated with the at least one impulse event, wherein the at least one negative sample does not include the portion of the audio stream data associated with the first time value of the audio stream data; augment training data based on the at least one positive sample and the at least one negative sample; train at least one machine-learning model using the augmented training data; and detect, using the at least one machine-learning model, one or more impulse events associated with audio data provided as input to the at least one machine-learning model.

In some embodiments, the at least one positive sample extends a first period before the first time value and a second period after the first time value. In some embodiments, the at least one negative sample includes a label different from the label associated with the audio stream data. In some embodiments, the at least one negative sample and the at least one positive sample do not overlap. In some embodiments, the at least one machine-learning model is configured to detect, at least, a class of sound associated with the at least one impulse event. In some embodiments, training the at least one machine-learning model using the augmented training data includes training the at least one machine-learning model with at least one backpropagation technique. In some embodiments, the instructions further cause the processor to further augment the training data using at least one of a spectral masking, a spectral shift, at least one background sound, at least one impulse response associated with an acoustic environment. In some embodiments the onset detector is configured to detect the at least one peak using at least one of an energy envelop associated with the audio stream data, at least one energy floor associated with the audio stream data, at least one energy peak associated with the audio stream data, and at least one dynamic range associated with the audio stream data.

In some embodiments, an apparatus for data augmentation includes a processor and a memory. The memory includes instructions that, when executed by the processor, cause the processor to: receive audio stream data associated with at least one impulse event; receive a label associated with the audio stream data; detect, using an onset detector, at least one peak of the at least one impulse event, wherein the onset detector is configured to detect the at least one peak using at least one of an energy envelop associated with the audio stream data, at least one energy floor associated with the audio stream data, at least one energy peak associated with the audio stream data, and at least one dynamic range associated with the audio stream data; extract at least one positive sample of the audio stream data associated with the at least one impulse event, wherein the at least one positive sample includes a portion of the audio stream data associated with a first time value of the audio stream data; apply, to the at least one positive sample, the label associated with the audio stream data; extract at least one negative sample of the audio stream data associated with the at least one impulse event, wherein the at least one negative sample does not include the portion of the audio stream data associated with the first time value of the audio stream data; augment, using at least one of a spectral masking, a spectral shift, at least one background sound, at least one impulse response associated with an acoustic environment, training data based on the at least one positive sample and the at least one negative sample; and train at least one machine-learning model using the augmented training data.

In some embodiments, the at least one positive sample extends a first period before the first time value and a second period after the first time value. In some embodiments, the at least one negative sample includes a label different from the label associated with the audio stream data. In some embodiments, the at least one negative sample and the at least one positive sample do not overlap.

In some embodiments, a computer-implemented method for data augmentation includes receiving audio stream data associated with at least one impulse event, receiving a label associated with the audio stream data, and detecting, using an onset detector algorithm, at least one peak of the at least one impulse event. The method also includes extracting at least one positive sample of the audio stream data associated with the at least one impulse event, wherein the at least one positive sample includes a portion of the audio stream data associated with a first time value of the audio stream data. The method also includes labeling, the at least one positive sample, with the label associated with the audio stream data to yield at least one labeled positive sample and extracting at least one negative sample of the audio stream data associated with the at least one impulse event, wherein the at least one negative sample does not include the portion of the audio stream data associated with the first time value of the audio stream data. The method also includes augmenting machine-learning training data based on the at least one labeled positive sample and the at least one negative sample.

In some embodiments, the at least one positive sample extends a first period before the first time value and a second period after the first time value. In some embodiments, the at least one negative sample includes a label different from the label associated with the audio stream data. In some embodiments, the at least one negative sample and the at least one positive sample do not overlap. In some embodiments, the method also includes training, with the augmented machine-learning training data, at least one machine-learning model, wherein the at least one machine-learning model is configured to detect, at least, a class of sound associated with the at least one impulse event. In some embodiments, training the at least one machine-learning model with the augmented machine-learning training data includes training the at least one machine-learning model with at least one backpropagation technique. In some embodiments, the method also includes further augmenting the machine-learning training data using at least one of a spectral masking, a spectral shift, at least one background sound, at least one impulse response associated with an acoustic environment. In some embodiments, the onset detector algorithm is configured to detect the at least one peak using at least one of an energy envelop associated with the audio stream data, at least one energy floor associated with the audio stream data, at least one energy peak associated with the audio stream data, and at least one dynamic range associated with the audio stream data.

In some embodiments, a system for training an impulsive event detection machine-learning model includes a processor and a memory. The memory includes instructions that, when executed by the processor, cause the processor to: receive audio stream data associated with at least one impulse event; receive a label associated with the audio stream data; detect, using an onset detector algorithm, at least one peak of the at least one impulse event; extract at least one positive sample of the audio stream data associated with the at least one impulse event, wherein the at least one positive sample includes a portion of the audio stream data associated with a first time value of the audio stream data; label, the at least one positive sample, with the label associated with the audio stream data to yield at least one labeled positive sample; extract at least one negative sample of the audio stream data associated with the at least one impulse event, wherein the at least one negative sample does not include the portion of the audio stream data associated with the first time value of the audio stream data; augment machine-learning training data based on the at least one labeled positive sample and the at least one negative sample; and train the impulsive event detection machine-learning model using the augmented machine-learning training data.

In some embodiments, the at least one positive sample extends a first period before the first time value and a second period after the first time value. In some embodiments, the at least one negative sample includes a label different from the label associated with the audio stream data. In some embodiments, the at least one negative sample and the at least one positive sample do not overlap. In some embodiments, the instructions further cause the processor to detect, using the impulsive event detection machine-learning model, one or more impulse events associated with audio data provided as input to the impulsive event detection least one machine-learning model. In some embodiments, training the impulsive event detection machine-learning model using the augmented machine-learning training data includes training the impulsive event detection machine-learning model with at least one backpropagation technique. In some embodiments, the instructions further cause the processor to further augment the machine-learning training data using at least one of a spectral masking, a spectral shift, at least one background sound, at least one impulse response associated with an acoustic environment. In some embodiments, the onset detector algorithm is configured to detect the at least one peak using at least one of an energy envelop associated with the audio stream data, at least one energy floor associated with the audio stream data, at least one energy peak associated with the audio stream data, and at least one dynamic range associated with the audio stream data.

In some embodiments, an apparatus for impulsive event detection includes a processor and a memory. The memory includes instructions that, when executed by the processor, cause the processor to: receive audio stream data associated with at least one impulse event; receive a label associated with the audio stream data; detect, using an onset detector algorithm, at least one peak of the at least one impulse event, wherein the onset detector is configured to detect the at least one peak using at least one of an energy envelop associated with the audio stream data, at least one energy floor associated with the audio stream data, at least one energy peak associated with the audio stream data, and at least one dynamic range associated with the audio stream data; extract at least one positive sample of the audio stream data associated with the at least one impulse event, wherein the at least one positive sample includes a portion of the audio stream data associated with a first time value of the audio stream data; label, the at least one positive sample, with the label associated with the audio stream data to yield at least one labeled positive sample; extract at least one negative sample of the audio stream data associated with the at least one impulse event, wherein the at least one negative sample does not include the portion of the audio stream data associated with the first time value of the audio stream data; augment, using at least one of a spectral masking, a spectral shift, at least one background sound, at least one impulse response associated with an acoustic environment, machine-learning training data based on the at least one labeled positive sample and the at least one negative sample; train at least one machine-learning model using the augmented machine-learning training data; and detect, using the at least one machine-learning model, one or more impulse events associated with audio data provided as input to the at least one machine-learning model.

In some embodiments, the at least one positive sample extends a first period before the first time value and a second period after the first time value. In some embodiments, the at least one negative sample includes a label different from the label associated with the audio stream data. In some embodiments, the at least one negative sample and the at least one positive sample do not overlap.

The processes, methods, or algorithms disclosed herein can be deliverable to/implemented by a processing device, controller, or computer, which can include any existing programmable electronic control unit or dedicated electronic control unit. Similarly, the processes, methods, or algorithms can be stored as data and instructions executable by a controller or computer in many forms including, but not limited to, information permanently stored on non-writable storage media such as ROM devices and information alterably stored on writeable storage media such as floppy disks, magnetic tapes, CDs, RAM devices, and other magnetic and optical media. The processes, methods, or algorithms can also be implemented in a software executable object. Alternatively, the processes, methods, or algorithms can be embodied in whole or in part using suitable hardware components, such as Application Specific Integrated Circuits (ASICs), Field-Programmable Gate Arrays (FPGAs), state machines, controllers or other hardware components or devices, or a combination of hardware, software and firmware components.

While exemplary embodiments are described above, it is not intended that these embodiments describe all possible forms encompassed by the claims. The words used in the specification are words of description rather than limitation, and it is understood that various changes can be made without departing from the spirit and scope of the disclosure. As previously described, the features of various embodiments can be combined to form further embodiments of the invention that may not be explicitly described or illustrated. While various embodiments could have been described as providing advantages or being preferred over other embodiments or prior art implementations with respect to one or more desired characteristics, those of ordinary skill in the art recognize that one or more features or characteristics can be compromised to achieve desired overall system attributes, which depend on the specific application and implementation. These attributes can include, but are not limited to cost, strength, durability, life cycle cost, marketability, appearance, packaging, size, serviceability, weight, manufacturability, ease of assembly, etc. As such, to the extent any embodiments are described as less desirable than other embodiments or prior art implementations with respect to one or more characteristics, these embodiments are not outside the scope of the disclosure and can be desirable for particular applications. 

What is claimed is:
 1. A computer-implemented method for data augmentation, the method comprising: receiving audio stream data associated with at least one impulse event; receiving a label associated with the audio stream data; detecting, using an onset detector algorithm, at least one peak of the at least one impulse event; extracting at least one positive sample of the audio stream data associated with the at least one impulse event, wherein the at least one positive sample includes a portion of the audio stream data associated with a first time value of the audio stream data; labeling the at least one positive sample with the label associated with the audio stream data to yield at least one labeled positive sample; extracting at least one negative sample of the audio stream data associated with the at least one impulse event, wherein the at least one negative sample does not include the portion of the audio stream data associated with the first time value of the audio stream data; and augmenting machine-learning training data based on the at least one labeled positive sample and the at least one negative sample.
 2. The computer-implemented method of claim 1, wherein the at least one positive sample extends a first period before the first time value and a second period after the first time value.
 3. The computer-implemented method of claim 1, wherein the at least one negative sample includes a label different from the label associated with the audio stream data.
 4. The computer-implemented method of claim 1, wherein the at least one negative sample and the at least one positive sample do not overlap.
 5. The computer-implemented method of claim 1, further comprising training at least one machine-learning model with the augmented machine-learning training data, wherein the at least one machine-learning model is configured to detect, at least, a class of sound associated with the at least one impulse event.
 6. The computer-implemented method of claim 5, wherein training the at least one machine-learning model with the augmented training data includes training the at least one machine-learning model with at least one backpropagation technique.
 7. The computer-implemented method of claim 1, further comprising further augmenting the machine-learning training data using at least one of a spectral masking, a spectral shift, at least one background sound, at least one impulse response associated with an acoustic environment.
 8. The computer-implemented method of claim 1, wherein the onset detector algorithm is configured to detect the at least one peak using at least one of an energy envelop associated with the audio stream data, at least one energy floor associated with the audio stream data, at least one energy peak associated with the audio stream data, and at least one dynamic range associated with the audio stream data.
 9. A system for training an impulsive event detection machine-learning model, the system comprising: a processor; and a memory including instructions that, when executed by the processor, cause the processor to: receive audio stream data associated with at least one impulse event; receive a label associated with the audio stream data; detect, using an onset detector algorithm, at least one peak of the at least one impulse event; extract at least one positive sample of the audio stream data associated with the at least one impulse event, wherein the at least one positive sample includes a portion of the audio stream data associated with a first time value of the audio stream data; label, the at least one positive sample, with the label associated with the audio stream data to yield at least one labeled positive sample; extract at least one negative sample of the audio stream data associated with the at least one impulse event, wherein the at least one negative sample does not include the portion of the audio stream data associated with the first time value of the audio stream data; augment machine-learning training data based on the at least one labeled positive sample and the at least one negative sample; and train the impulsive event detection machine-learning model using the augmented machine-learning training data.
 10. The system of claim 9, wherein the at least one positive sample extends a first period before the first time value and a second period after the first time value.
 11. The system of claim 9, wherein the at least one negative sample includes a label different from the label associated with the audio stream data.
 12. The system of claim 9, wherein the at least one negative sample and the at least one positive sample do not overlap.
 13. The system of claim 9, wherein the instructions further cause the processor to detect, using the impulsive event detection machine-learning model, one or more impulse events associated with audio data provided as input to the impulsive event detection machine-learning model.
 14. The system of claim 9, wherein training the impulsive event detection machine-learning model using the augmented machine-learning training data includes training the impulsive event detection machine-learning model with at least one backpropagation technique.
 15. The system of claim 9, wherein the instructions further cause the processor to further augment the machine-learning training data using at least one of a spectral masking, a spectral shift, at least one background sound, at least one impulse response associated with an acoustic environment.
 16. The system of claim 9, wherein the onset detector algorithm is configured to detect the at least one peak using at least one of an energy envelop associated with the audio stream data, at least one energy floor associated with the audio stream data, at least one energy peak associated with the audio stream data, and at least one dynamic range associated with the audio stream data.
 17. An apparatus for impulsive event detection, the apparatus comprising: a processor; and a memory including instructions that, when executed by the processor, cause the processor to: receive audio stream data associated with at least one impulse event; receive a label associated with the audio stream data; detect, using an onset detector algorithm, at least one peak of the at least one impulse event, wherein the onset detector algorithm is configured to detect the at least one peak using at least one of an energy envelop associated with the audio stream data, at least one energy floor associated with the audio stream data, at least one energy peak associated with the audio stream data, and at least one dynamic range associated with the audio stream data; extract at least one positive sample of the audio stream data associated with the at least one impulse event, wherein the at least one positive sample includes a portion of the audio stream data associated with a first time value of the audio stream data; label, the at least one positive sample, with the label associated with the audio stream data to yield at least one labeled positive sample; extract at least one negative sample of the audio stream data associated with the at least one impulse event, wherein the at least one negative sample does not include the portion of the audio stream data associated with the first time value of the audio stream data; augment, using at least one of a spectral masking, a spectral shift, at least one background sound, at least one impulse response associated with an acoustic environment, machine-learning training data based on the at least one labeled positive sample and the at least one negative sample; train at least one machine-learning model using the augmented machine-learning training data; and detect, using the at least one machine-learning model, one or more impulse events associated with audio data provided as input to the at least one machine-learning model.
 18. The apparatus of claim 17, wherein the at least one positive sample extends a first period before the first time value and a second period after the first time value.
 19. The apparatus of claim 17, wherein the at least one negative sample includes a label different from the label associated with the audio stream data.
 20. The apparatus of claim 17, wherein the at least one negative sample and the at least one positive sample do not overlap. 